Mohammed Yasin H, M. Suresh, Z. G. Tefera, Samuel Asefa Fufa
{"title":"M-Polynomial and NM-Polynomial Methods for Topological Indices of Polymers","authors":"Mohammed Yasin H, M. Suresh, Z. G. Tefera, Samuel Asefa Fufa","doi":"10.1155/2024/1084450","DOIUrl":null,"url":null,"abstract":"Topological indices (TIs) are numerical tools widely applied in chemometrics, biomedicine, and bioinformatics for predicting diverse physicochemical attributes and biological activities within molecular structures. Despite their significance, the challenges in deriving TIs necessitate novel approaches. This study addresses the limitations of conventional methods in dealing with dynamic molecular structures, focusing on the neighborhood M-polynomial (NM-polynomial), a pivotal polynomial for calculating degree-based TIs. Current literature acknowledges these polynomials but overlooks their limited adaptability to intricate biopolymer relationships. Our research advances by computing degree-based and neighborhood degree-based indices for prominent biopolymers, including polysaccharides, poly-γ-glutamic acid, and poly-L-lysine. Through innovative utilization of the NM-polynomial and the M-polynomial, we establish a fresh perspective on molecular structure and topological indices. Moreover, we present diverse graph representations highlighting the nuanced correlations between indices and structural parameters. By systematically investigating these indices and their underlying polynomials, our work contributes to predictive modelling in various fields. This exploration sheds light on intricate biochemical systems, offering insights into applications encompassing medicine, the food industry, and wastewater treatment. This research deepens our understanding of complex molecular interactions and paves the way for enhanced applications in diverse industries.","PeriodicalId":509297,"journal":{"name":"International Journal of Mathematics and Mathematical Sciences","volume":"42 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-02-02","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"International Journal of Mathematics and Mathematical Sciences","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1155/2024/1084450","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Topological indices (TIs) are numerical tools widely applied in chemometrics, biomedicine, and bioinformatics for predicting diverse physicochemical attributes and biological activities within molecular structures. Despite their significance, the challenges in deriving TIs necessitate novel approaches. This study addresses the limitations of conventional methods in dealing with dynamic molecular structures, focusing on the neighborhood M-polynomial (NM-polynomial), a pivotal polynomial for calculating degree-based TIs. Current literature acknowledges these polynomials but overlooks their limited adaptability to intricate biopolymer relationships. Our research advances by computing degree-based and neighborhood degree-based indices for prominent biopolymers, including polysaccharides, poly-γ-glutamic acid, and poly-L-lysine. Through innovative utilization of the NM-polynomial and the M-polynomial, we establish a fresh perspective on molecular structure and topological indices. Moreover, we present diverse graph representations highlighting the nuanced correlations between indices and structural parameters. By systematically investigating these indices and their underlying polynomials, our work contributes to predictive modelling in various fields. This exploration sheds light on intricate biochemical systems, offering insights into applications encompassing medicine, the food industry, and wastewater treatment. This research deepens our understanding of complex molecular interactions and paves the way for enhanced applications in diverse industries.
拓扑指数(TIs)是广泛应用于化学计量学、生物医学和生物信息学的数值工具,用于预测分子结构中的各种物理化学属性和生物活性。尽管拓扑指数意义重大,但在推导拓扑指数时仍面临挑战,因此有必要采用新方法。本研究针对传统方法在处理动态分子结构时的局限性,重点研究了邻域 M 多项式(NM-polynomial),这是计算基于度数的 TI 的关键多项式。目前的文献承认这些多项式,但忽略了它们对错综复杂的生物聚合物关系的适应性有限。我们的研究通过计算主要生物聚合物(包括多糖、聚-γ-谷氨酸和聚-L-赖氨酸)的基于度和邻域度的指数取得了进展。通过对 NM 多项式和 M 多项式的创新利用,我们建立了分子结构和拓扑指数的全新视角。此外,我们还提出了多种图形表示法,突出了指数与结构参数之间的微妙关联。通过系统地研究这些指数及其底层多项式,我们的研究工作为各领域的预测建模做出了贡献。这一探索揭示了错综复杂的生化系统,为医学、食品工业和废水处理等应用领域提供了启示。这项研究加深了我们对复杂分子相互作用的理解,并为加强在不同行业的应用铺平了道路。